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Edge-variational Graph Convolutional Networks for Uncertainty-aware Disease Prediction

About

There is a rising need for computational models that can complementarily leverage data of different modalities while investigating associations between subjects for population-based disease analysis. Despite the success of convolutional neural networks in representation learning for imaging data, it is still a very challenging task. In this paper, we propose a generalizable framework that can automatically integrate imaging data with non-imaging data in populations for uncertainty-aware disease prediction. At its core is a learnable adaptive population graph with variational edges, which we mathematically prove that it is optimizable in conjunction with graph convolutional neural networks. To estimate the predictive uncertainty related to the graph topology, we propose the novel concept of Monte-Carlo edge dropout. Experimental results on four databases show that our method can consistently and significantly improve the diagnostic accuracy for Autism spectrum disorder, Alzheimer's disease, and ocular diseases, indicating its generalizability in leveraging multimodal data for computer-aided diagnosis.

Yongxiang Huang, Albert C. S. Chung• 2020

Related benchmarks

TaskDatasetResultRank
Alzheimer's disease classificationTADPOLE
AUC76.7
28
Disease status predictionADNI TADPOLE challenge (test)
Accuracy76.6
12
Alzheimer's disease progression predictionTADPOLE (transductive)
Accuracy86.4
6
Disease predictionABIDE (test)
Accuracy62.7
6
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